论文标题

加权验证工具评估高影响天气事件的单变量和多元预测

Weighted verification tools to evaluate univariate and multivariate forecasts for high-impact weather events

论文作者

Allen, Sam, Bhend, Jonas, Martius, Olivia, Ziegel, Johanna

论文摘要

为了减轻与不利天气条件相关的影响,气象服务向公众发出天气警告。这些警告在很大程度上依赖于潜在的预测系统发布的预测。在确定要构建警告的预测系统时,重要的是要比较系统以预测极端天气事件的发生和严重性的能力。但是,评估极端事件的预测是一项具有挑战性的任务。这一事实进一步加剧了这一事实,即高影响力的天气通常是由于几个混杂的特征而表现出来的,这一实现导致了对所谓复合天气事件的大量研究。因此,单变量和多变量方法都需要评估高影响力天气的预测。在本文中,我们讨论了加权验证工具,这些工具可以在预测评估期间强调特定结果。我们在单变量和多变量设置中审查并比较了构建加权评分规则的不同方法,并利用了加权分数的现有结果来引入加权概率积分转换(PIT)直方图,从而可以在特定的comp上进行条件评估。为了说明这些加权验证工具所带来的实际利益,它们在案例研究中使用,以评估瑞士联邦气象与气候学办公室(Meteoswiss)发出的极端热量事件的预测。

To mitigate the impacts associated with adverse weather conditions, meteorological services issue weather warnings to the general public. These warnings rely heavily on forecasts issued by underlying prediction systems. When deciding which prediction system(s) to utilise to construct warnings, it is important to compare systems in their ability to forecast the occurrence and severity of extreme weather events. However, evaluating forecasts for extreme events is known to be a challenging task. This is exacerbated further by the fact that high-impact weather often manifests as a result of several confounding features, a realisation that has led to considerable research on so-called compound weather events. Both univariate and multivariate methods are therefore required to evaluate forecasts for high-impact weather. In this paper, we discuss weighted verification tools, which allow particular outcomes to be emphasised during forecast evaluation. We review and compare different approaches to construct weighted scoring rules, both in a univariate and multivariate setting, and we leverage existing results on weighted scores to introduce weighted probability integral transform (PIT) histograms, allowing forecast calibration to be assessed conditionally on particular outcomes having occurred. To illustrate the practical benefit afforded by these weighted verification tools, they are employed in a case study to evaluate forecasts for extreme heat events issued by the Swiss Federal Office of Meteorology and Climatology (MeteoSwiss).

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源